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Nonparametric Predictive Inference for Ordinal Data
Authors:F. P. A. Coolen  P. Coolen-Schrijner  T. Coolen-Maturi  F. F. Elkhafifi
Affiliation:1. Department of Mathematical Sciences , Durham University , Durham , United Kingdom frank.coolen@durham.ac.uk;3. Department of Mathematical Sciences , Durham University , Durham , United Kingdom;4. Durham University Business School , Durham University , Durham , United Kingdom;5. Department of Statistics , Benghazi University , Benghazi , Libya
Abstract:Nonparametric predictive inference (NPI) is a powerful frequentist statistical framework based only on an exchangeability assumption for future and past observations, made possible by the use of lower and upper probabilities. In this article, NPI is presented for ordinal data, which are categorical data with an ordering of the categories. The method uses a latent variable representation of the observations and categories on the real line. Lower and upper probabilities for events involving the next observation are presented, and briefly compared to NPI for non ordered categorical data. As application, the comparison of multiple groups of ordinal data is presented.
Keywords:Categorical data  Lower and upper probabilities  Multiple comparisons  Nonparametric predictive inference  Ordinal data
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